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Synergy of two mutations based immune multi-objective automatic fuzzy clustering algorithm

机译:基于两个变异的协同免疫多目标自动模糊聚类算法

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In this paper, a synergy of two mutation based immune multi-objective automatic fuzzy clustering algorithm (STMIMAFC) is proposed for the task of automatically evolving the number of clusters as well as a proper partitioning of data set. In the proposed algorithm, firstly, two new mutation operators, which are designed for the different structures of chromosomes respectively, are cooperated with each other to generate the new individuals. Secondly, we propose an exponential function based compactness validity index. The proposed method has been extensively compared with a synergy of genetic algorithm and multi-objective differential evolution, multi-objective modified differential evolution based fuzzy clustering, multi-objective clustering with automatic -determination over a test suit of several real life data sets and synthetic data sets. Experimental results indicate the superiority of the STMIMAFC over other three compared clustering algorithms on clustering accuracy and running time.
机译:本文提出了一种基于两个变异的免疫多目标自动模糊聚类算法(STMIMAFC)的协同作用,以实现聚类数量的自动演化以及数据集的适当划分。在所提出的算法中,首先,两个分别针对染色体的不同结构设计的新突变算子相互配合,生成新个体。其次,提出了一种基于指数函数的紧密度有效性指标。将该方法与遗传算法和多目标差分演化的协同作用,基于多目标改进的差分演化的模糊聚类,具有自动确定性的多目标聚类在多个实际数据集和综合测试集上的比较进行了广泛的比较。数据集。实验结果表明,STMIMAFC在聚类准确性和运行时间方面优于其他三个比较的聚类算法。

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